A Method for Estimating Longitudinal Change in Motor Skill from Individualized Functional-Connectivity Measures

Sensors (Basel). 2022 Dec 15;22(24):9857. doi: 10.3390/s22249857.

Abstract

Pragmatic, objective, and accurate motor assessment tools could facilitate more frequent appraisal of longitudinal change in motor function and subsequent development of personalized therapeutic strategies. Brain functional connectivity (FC) has shown promise as an objective neurophysiological measure for this purpose. The involvement of different brain networks, along with differences across subjects due to age or existing capabilities, motivates an individualized approach towards the evaluation of FC. We advocate the use of EEG-based resting-state FC (rsFC) measures to address the pragmatic requirements. Pertaining to appraisal of accuracy, we suggest using the acquisition of motor skill by healthy individuals that could be quantified at small incremental change. Computer-based tracing tasks are a good candidate in this regard when using spatial error in tracing as an objective measure of skill. This work investigates the application of an individualized method that utilizes Partial Least Squares analysis to estimate the longitudinal change in tracing error from changes in rsFC. Longitudinal data from participants yielded an average accuracy of 98% (standard deviation of 1.2%) in estimating tracing error. The results show potential for an accurate individualized motor assessment tool that reduces the dependence on the expertise and availability of trained examiners, thereby facilitating more frequent appraisal of function and development of personalized training programs.

Keywords: EEG sensors; motor skill assessment; partial least squares correlation and regression; phase lag index; resting state functional connectivity.

MeSH terms

  • Brain Mapping
  • Brain* / physiology
  • Head
  • Humans
  • Magnetic Resonance Imaging
  • Motor Skills* / physiology